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Python is a multi-paradigm, dynamically typed, multipurpose programming language, designed to be quick (to learn, to use, and to understand), and to enforce a clean and uniform syntax. Two similar but incompatible versions of Python are commonly in use, Python 2.7 and 3.x. For version-specific Python questions, add the [python-2.7] or [python-3.x] tag. When using a Python variant or library (e.g. Jython, PyPy, Pandas, Numpy), please include it in the tags.

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1
vote
pandas.DatetimeIndex.quarter Might also be useful. And then you can use groupby to aggregate easily.
answered Jun 22 '17 by Fredz0r
1
vote
You could use Seaborn facetgrid. http://seaborn.pydata.org/generated/seaborn.FacetGrid.html
answered Jun 23 '17 by Fredz0r
1
vote
1answer
I am using a number of pipelines to compare in cross validation. As a benchmark model I want to include a simple model which uses always the same fixed coefficient, and hence, doesn't depend on the tr …
asked Apr 19 by Fredz0r
0
votes
You could use starmap to pass multiple arguments so that you can keep track of your seeds outside your worker functions. import random from multiprocessing import Pool def run_process(task_nr,seed): …
answered Aug 1 by Fredz0r
1
vote
The problem is you group on items after removing users that did not interact more than X times. You first need to check independently on both conditions and only then combine the results. import p …
answered Jun 22 '17 by Fredz0r
1
vote
0answers
When running colaboratory notebooks, I experience that the notebook sometimes loses it's state after making changes to one of the cells, which makes me need to rerun the entire notebook. I am aware o …
asked Feb 23 '18 by Fredz0r
3
votes
If I understand your question correctly using .apply is not necessary in this case. This is something I would avoid unless there's no other option because of performance issues. Try this: df.sort_va …
answered Jun 23 '17 by Fredz0r
1
vote
The idea is that the data which you use to fit the model to contains exactly the same features as the data you used to train the model. Finally, I delete features that were extracted from this art …
answered Aug 7 '17 by Fredz0r
0
votes
Maybe you can try setting join 'If True, lines will be drawn between point estimates at the same hue level.' Alternatively, you could use: use pandas.DataFrame.fillna df['score']=df['score'].fill …
answered Feb 23 '18 by Fredz0r
1
vote
If you want to do elementwise operations on columns you can't adress your columns like this. Use numpy where
answered Jun 23 '17 by Fredz0r
-1
votes
https://docs.scipy.org/doc/numpy-1.14.0/reference/generated/numpy.random.poisson.html import numpy as np s = np.random.poisson(size=n, lam=p)
answered May 12 '18 by Fredz0r